Title
End-to-end malware detection for android IoT devices using deep learning.
Abstract
The Internet of Things (IoT) has grown rapidly in recent years and has become one of the most active areas in the global market. As an open source platform with a large number of users, Android has become the driving force behind the rapid development of the IoT, also attracted malware attacks. Considering the explosive growth of Android malware in recent years, there is an urgent need to propose efficient methods for Android malware detection. Although the existing Android malware detection methods based on machine learning has achieved encouraging performance, most of these methods require a lot of time and effort from the malware analysts to build dynamic or static features, so these methods are difficult to apply in practice. Therefore, end-to-end malware detection methods without human expert intervention are required. This paper proposes two end-to-end Android malware detection methods based on deep learning. Compared with the existing detection methods, the proposed methods have the advantage of their end-to-end learning process. Our proposed methods resample the raw bytecodes of the classes.dex files of Android applications as input to deep learning models. These models are trained and evaluated in a dataset containing 8K benign applications and 8K malicious applications. Experiments show that the proposed methods can achieve 93.4% and 95.8% detection accuracy respectively. Compared with the existing methods, our proposed methods are not limited by input filesize, no manual feature engineering, low resource consumption, so they are more suitable for application on Android IoT devices.
Year
DOI
Venue
2020
10.1016/j.adhoc.2020.102098
Ad Hoc Networks
Keywords
Field
DocType
Android malware detection,IoT,End-to-end,Deep learning
Resource consumption,Android (operating system),Computer science,End-to-end principle,Internet of Things,Computer network,Android malware,Feature engineering,Artificial intelligence,Deep learning,Malware,Embedded system
Journal
Volume
ISSN
Citations 
101
1570-8705
2
PageRank 
References 
Authors
0.36
0
5
Name
Order
Citations
PageRank
Zhongru Ren120.36
Haomin Wu220.36
Ning Qian3526.58
Iftikhar Hussain420.36
Bingcai Chen520.36